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A NEW DATA ASSOCIATION ALGORITHM USING PROBABILITY HYPOTHESIS DENSITY FILTER 被引量:2

A NEW DATA ASSOCIATION ALGORITHM USING PROBABILITY HYPOTHESIS DENSITY FILTER
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摘要 Probability Hypothesis Density (PHD) filtering approach has shown its advantages in tracking time varying number of targets even when there are noise,clutter and misdetection. For linear Gaussian Mixture (GM) system,PHD filter has a closed form recursion (GMPHD). But PHD filter cannot estimate the trajectories of multi-target because it only provides identity-free estimate of target states. Existing data association methods still remain a big challenge mostly because they are com-putationally expensive. In this paper,we proposed a new data association algorithm using GMPHD filter,which significantly alleviated the heavy computing load and performed multi-target trajectory tracking effectively in the meantime. Probability Hypothesis Density (PHD) filtering approach has shown its advantages in tracking time varying number of targets even when there are noise, clutter and misdetection. For linear Gaussian Mixture (GM) system, PHD filter has a closed form recursion (GMPHD). But PHD filter cannot estimate the trajectories of multi-target because it only provides identity-free estimate of target states. Existing data association methods still remain a big challenge mostly because they are com- putationally expensive. In this paper, we proposed a new data association algorithm using GMPHD filter, which significantly alleviated the heavy computing load and performed multi-target trajectory tracking effectively in the meantime.
出处 《Journal of Electronics(China)》 2010年第2期218-223,共6页 电子科学学刊(英文版)
基金 Supported by the National Natural Science Foundation of China (No.60772154) the President Foundation of Graduate University of Chinese Academy of Sciences (No.085102GN00)
关键词 Multi-target trajectory tracking Probability Hypothesis Density (PHD) Gaussian mixture (GM) model Multiple hypotheses detection Peak-to-track association Multi-target trajectory tracking Probability Hypothesis Density (PHD) Gaussian mixture ((]M) model Multiple hypotheses detection Peak-to-track association
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